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A Learning Algorithm Of Boosting Kernel Discriminant Analysis For Pattern Recognition

机译:模式识别的Boosting Kernel判别分析学习算法

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In this paper, we present a new method to enhance classification performance of a multiple classifier system by combining a boosting technique called AdaBoost.M2 and Kernel Discriminant Analysis (KDA). To reduce the dependency between classifier outputs and to speed up the learning, each classifier is trained in a different feature space, which is obtained by applying KDA to a small set of hard-to-classify training samples. The training of the system is conducted based on AdaBoost.M2, and the classifiers are implemented by Radial Basis Function networks. To perform KDA at every boosting round in a realistic time scale, a new kernel selection method based on the class separability measure is proposed. Furthermore, a new criterion of the training convergence is also proposed to acquire good classification performance with fewer boosting rounds. To evaluate the proposed method, several experiments are carried out using standard evaluation datasets. The experimental results demonstrate that the proposed method can select an optimal kernel parameter more efficiently than the conventional cross-validation method, and that the training of boosting classifiers is terminated with a fairly small number of rounds to attain good classification accuracy. For multi-class classification problems, the proposed method outperforms both Boosting Linear Discriminant Analysis (BLDA) and Radial-Basis Function Network (RBFN) with regard to the classification accuracy. On the other hand, the performance evaluation for 2-class problems shows that the advantage of the proposed BKDA against BLDA and RBFN depends on the datasets.
机译:在本文中,我们提出了一种通过结合称为AdaBoost.M2的增强技术和内核判别分析(KDA)来增强多分类器系统的分类性能的新方法。为了减少分类器输出之间的依赖关系并加快学习速度,每个分类器都在不同的特征空间中进行训练,这是通过将KDA应用于一小组难以分类的训练样本而获得的。系统的训练基于AdaBoost.M2进行,分类器由径向基函数网络实现。为了在现实的时间尺度上每轮提升执行KDA,提出了一种基于类可分离性度量的新内核选择方法。此外,还提出了一种新的训练收敛准则,以较少的助推次数获得良好的分类性能。为了评估所提出的方法,使用标准评估数据集进行了几次实验。实验结果表明,与传统的交叉验证方法相比,该方法可以更有效地选择最优的核参数,并且以较少的回合次数终止提升分类器的训练,以达到良好的分类精度。对于多类分类问题,在分类精度方面,该方法优于Boosting线性判别分析(BLDA)和径向基函数网络(RBFN)。另一方面,针对两类问题的性能评估表明,针对BLDA和RBFN提出的BKDA的优势取决于数据集。

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